--- title: README emoji: 🏃 colorFrom: gray colorTo: red sdk: static pinned: false --- **Github repository:** https://github.com/Franblueee/torchmil [**torchmil**](https://github.com/Franblueee/torchmil) is a [PyTorch](https://pytorch.org/)-based library for deep Multiple Instance Learning (MIL). It provides a simple, flexible, and extensible framework for working with MIL models and data. It includes: - A collection of popular [MIL models](https://franblueee.github.io/torchmil/api/models/). - Different [PyTorch modules](https://franblueee.github.io/torchmil/api/nn/) frequently used in MIL models. - Handy tools to deal with [MIL data](https://franblueee.github.io/torchmil/api/data/). - A collection of popular [MIL datasets](https://franblueee.github.io/torchmil/api/datasets/). ## Installation ```bash pip install torchmil ``` ## Quick start You can load a MIL dataset and train a MIL model in just a few lines of code: ```python from torchmil.datasets import Camelyon16MIL from torchmil.models import ABMIL from torchmil.utils import Trainer from torchmil.data import collate_fn from torch.utils.data import DataLoader # Load the Camelyon16 dataset dataset = Camelyon16MIL(root='data', features='UNI') dataloader = DataLoader(dataset, batch_size=4, shuffle=True, collate_fn=collate_fn) # Instantiate the ABMIL model and optimizer model = ABMIL(in_shape=(2048,), criterion=torch.nn.BCEWithLogitsLoss()) # each model has its own criterion optimizer = torch.optim.Adam(model.parameters(), lr=1e-4) # Instantiate the Trainer trainer = Trainer(model, optimizer, device='cuda') # Train the model trainer.train(dataloader, epochs=10) # Save the model torch.save(model.state_dict(), 'model.pth') ``` ## Next steps You can take a look at the [examples](https://franblueee.github.io/torchmil/examples/) to see how to use **torchmil** in practice. To see the full list of available models, datasets, and modules, check the [API reference](https://franblueee.github.io/torchmil/api/). ## Contributing to torchmil We welcome contributions to **torchmil**! There several ways you can contribute: - Reporting bugs or issues you encounter while using the library, asking questions, or requesting new features: use the [Github issues](https://github.com/Franblueee/torchmil/issues). - Improving the documentation: if you find any part of the documentation unclear or incomplete, feel free to submit a pull request with improvements. - If you have a new model, dataset, or utility that you think would be useful for the community, please consider submitting a pull request to add it to the library. Take a look at [CONTRIBUTING.md](https://github.com/Franblueee/torchmil/blob/main/CONTRIBUTING.md) for more details on how to contribute. ## Citation If you find this library useful, please consider citing it: ```bibtex @article{castro2025torchmil, title={torchmil: A PyTorch-based library for deep Multiple Instance Learning}, author={Castro-Mac{\'\i}as, Francisco M and S{\'a}ez-Maldonado, Francisco J and Morales-{\'A}lvarez, Pablo and Molina, Rafael}, journal={arXiv preprint arXiv:2509.08129}, year={2025} } ```